Statistical Machine Translation (SMT) is the task of automatic translation between two natural languages (source language and target language) by using bilingual corpora. To accomplish this goal, machine learning models try to capture human translation patterns inside a bilingual corpus. An open challenge for SMT is finding translations for phrases which are missing in the training data (out-of-vocabulary phrases). We propose to use paraphrases to provide translations for out-of-vocabulary (OOV) phrases. We compare two major approaches to automatically extract paraphrases from corpora: distributional profile (DP) and bilingual pivoting. The multilingual Paraphrase Database (PPDB) is a freely available automatically created (using bilingual ...
We present a method for improving machine translation (MT) evaluation by targeted paraphrasing of r...
Statistical machine translation (SMT) suffers from the accuracy problem that the translation pairs a...
Paraphrase patterns are useful in paraphrase recognition and generation. In this paper, we present a...
The multilingual Paraphrase Database (PPDB) is a freely available automatically created resource of ...
Parallel corpora are crucial for training SMT systems. However, for many lan-guage pairs they are av...
Out-of-vocabulary (oov) words or phrases still remain a challenge in statistical machine translation...
Previous work has used monolingual par-allel corpora to extract and generate para-phrases. We show t...
Untranslated words still constitute a ma-jor problem for Statistical Machine Trans-lation (SMT), and...
Statistical methods have proven to be very effective when addressing linguistic problems, specially ...
We apply statistical machine translation (SMT) tools to generate novel paraphrases of input sentence...
We apply statistical machine translation (SMT) tools to generate novel paraphrases of input sentence...
In this paper we investigate the automatic generation of paraphrases by using machine translation te...
Most state-of-the-art statistical machine translation systems use log-linear models, which are defin...
The statistical framework has proved to be very successful in machine translation. The main reason f...
Large amounts of data are essential for training statistical machine translation systems. In this pa...
We present a method for improving machine translation (MT) evaluation by targeted paraphrasing of r...
Statistical machine translation (SMT) suffers from the accuracy problem that the translation pairs a...
Paraphrase patterns are useful in paraphrase recognition and generation. In this paper, we present a...
The multilingual Paraphrase Database (PPDB) is a freely available automatically created resource of ...
Parallel corpora are crucial for training SMT systems. However, for many lan-guage pairs they are av...
Out-of-vocabulary (oov) words or phrases still remain a challenge in statistical machine translation...
Previous work has used monolingual par-allel corpora to extract and generate para-phrases. We show t...
Untranslated words still constitute a ma-jor problem for Statistical Machine Trans-lation (SMT), and...
Statistical methods have proven to be very effective when addressing linguistic problems, specially ...
We apply statistical machine translation (SMT) tools to generate novel paraphrases of input sentence...
We apply statistical machine translation (SMT) tools to generate novel paraphrases of input sentence...
In this paper we investigate the automatic generation of paraphrases by using machine translation te...
Most state-of-the-art statistical machine translation systems use log-linear models, which are defin...
The statistical framework has proved to be very successful in machine translation. The main reason f...
Large amounts of data are essential for training statistical machine translation systems. In this pa...
We present a method for improving machine translation (MT) evaluation by targeted paraphrasing of r...
Statistical machine translation (SMT) suffers from the accuracy problem that the translation pairs a...
Paraphrase patterns are useful in paraphrase recognition and generation. In this paper, we present a...